DocumentCode :
1369788
Title :
Generalized Consistent Estimation on Low-Rank Krylov Subspaces of Arbitrarily High Dimension
Author :
Rubio, Francisco ; Mestre, Xavier
Author_Institution :
Centre Tecnol. de Telecomunicacions de Catalunya (CTTC), Barcelona, Spain
Volume :
57
Issue :
10
fYear :
2009
Firstpage :
3787
Lastpage :
3800
Abstract :
The problem of Krylov subspace estimation based on the sample covariance matrix is addressed. The focus is on signal processing applications where the Krylov subspace is defined by the unknown second-order statistics of the observed samples and the signature vector associated with the desired parameter. In particular, the consistency of traditionally optimal sample estimators is revised and analytically characterized under a practically more relevant asymptotic regime, according to which not only the number of samples but also the observation dimension grow without bound at the same rate. Furthermore, an improved construction of a class of Krylov subspace estimators is proposed based on the generalized consistent estimation of a set of vector-valued power functions of the observation covariance matrix. To that effect, an extension of some known results from random matrix theory on the estimation of certain spectral functions of the covariance matrix to the convergence of not only the covariance eigenspectrum but also the associated eigensubspaces is provided. A new family of estimators is derived that generalizes conventional implementations by proving to be consistent for observations of arbitrarily high dimension. The proposed estimators are shown to outperform traditional constructions via the numerical evaluation of the solution to two fundamental problems in sensor array signal processing, namely the problem of estimating the power of an intended source and the estimation of the principal eigenspace and dominant eigenmodes of a structured covariance matrix.
Keywords :
array signal processing; covariance matrices; eigenvalues and eigenfunctions; estimation theory; covariance matrix; eigensubspaces; generalized consistent estimation; low-rank Krylov subspace estimation; optimal sample estimator; random matrix theory; second-order statistic; sensor array signal processing; signal processing application; vector-valued power function; Array signal processing; Convergence; Covariance matrix; Estimation theory; Filtering; Sensor arrays; Signal processing; Statistics; User-generated content; Wiener filter; Asymptotic analysis; Krylov methods; Stieltjes transform; random matrices; sample covariance matrix;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2009.2025094
Filename :
5238728
Link To Document :
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